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Biosignal Analysis Using Independent Components with Intelligent Systems

机译:使用具有智能系统的独立组件生物关像性分析

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This paper proposes early detection of myocardial infarct and heart arrhythmias from the characteristic pattern of the ECG waveform, and signal processing techniques for analysis of the biosignals along with the feature extraction and classification technique. Independent component analysis (ICA) is considered as a new technique suitable for the separation and removal of assorted noises independent of ECG signals. ECG Feature Extraction plays a major role in analyzing most of the cardiac diseases. This scheme determines the intervals and amplitudes in the ECG signal for succeeding analysis. The amplitudes and intervals value of P-QRS-T segment defines the functioning of the human heart. Artificial intelligence improves the biosignals' monitoring efficiency and helps serious caretakers to get a faster prior diagnosis. In our current work, we incorporated machine learning and different architecture of artificial neural network (ANN). The annotated standard samples from MIT-BIH arrhythmia database are used for experiments. Results attained using the proposed algorithm using MIT-BIH and PTB database illustrates that the neural network classifiers demonstrate high classification accuracies of over 98.96% should help cardiologist for early diagnostic of arrhythmias.
机译:本文提出了从ECG波形的特征模式的早期检测心肌梗塞和心脏心律失常,以及用于分析生物信息的信号处理技术以及特征提取和分类技术。独立分量分析(ICA)被认为是适合分离和移除独立于心电图信号的分离和移除什锦的噪声的新技术。 ECG特征提取在分析大多数心脏病方面发挥了重要作用。该方案确定ECG信号中的间隔和幅度以进行成功分析。 P-QRS-T区段的幅度和间隔值定义了人体的功能。人工智能提高了生物信息的监测效率,并帮助严肃的看护人获得更快的先验诊断。在我们目前的工作中,我们合并了机器学习和不同架构的人工神经网络(ANN)。来自MIT-BIH心律失常数据库的注释标准样本用于实验。使用MIT-BIH和PTB数据库的所提出的算法获得的结果表明,神经网络分类器表现出超过98.96%的高分类精度,应该有助于心血病的早期诊断。

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